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Semi-automated neuron boundary detection and nonbranching process segmentation in electron microscopy images

机译:电子显微镜图像中的半自动神经元边界检测和非分支过程分割

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摘要

Neuroscientists are developing new imaging techniques and generating large volumes of data in an effort to understand the complex structure of the nervous system. The complexity and size of this data makes human interpretation a labor-intensive task. To aid in the analysis, new segmentation techniques for identifying neurons in these feature rich datasets are required. This paper presents a method for neuron boundary detection and nonbranching process segmentation in electron microscopy images and visualizing them in three dimensions. It combines both automated segmentation techniques with a graphical user interface for correction of mistakes in the automated process. The automated process first uses machine learning and image processing techniques to identify neuron membranes that deliniate the cells in each two-dimensional section. To segment nonbranching processes, the cell regions in each two-dimensional section are connected in 3D using correlation of regions between sections. The combination of this method with a graphical user interface specially designed for this purpose, enables users to quickly segment cellular processes in large volumes.
机译:神经科学家正在开发新的成像技术,并生成大量数据,以了解神经系统的复杂结构。此数据的复杂性和大小使人工解释成为一项劳动密集型任务。为了帮助进行分析,需要新的分割技术来识别这些功能丰富的数据集中的神经元。本文提出了一种在电子显微镜图像中进行神经元边界检测和非分支过程分割并将其可视化的方法。它结合了自动分段技术和图形用户界面,以纠正自动化过程中的错误。自动化过程首先使用机器学习和图像处理技术来识别神经元膜,这些神经元膜会在每个二维部分中对细胞进行脱敏。为了分割非分支过程,使用各部分之间的区域相关性,将每个二维部分中的单元区域以3D方式连接。此方法与专门为此目的设计的图形用户界面的结合,使用户可以快速地大批量分割细胞过程。

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